Network dynamics of HFOs

data

Date: 10/24/22 Dataset Title: Epileptic High Frequency Oscillation EEG with Network Analysis Dataset Creators: Lin J & Stacey W Dataset Contact: William Stacey, M.D., Ph.D. william.stacey@umich.edu Code repository for data processing scripts: https://github.com/J4KLin/HFO-Network Research Overview: High frequency oscillation (HFO) has been known as a promising electrographic biomarker for epiletic tissue for decades. To this end, we characterized HFO networks through functional connectivity analysis of clinical intracranial EEG data from patients who have undergone resective surgery (pre-processed EEG dataset provided for one good outcome Engel I and one poor outcome Engel III patient). From the networks, we performed centrality analyses (results of which are also provided) to evaluate how HFO features can be used to predict patient outcome. Software requirements: Matlab R2021a or above (other toolboxes may be required) Instructions: Unzip "Data.7z" file. /BKGEEG - Preprocessed background (nonHFO) EEG data (.mat) /CombinedData - Final centrality and hfo features for all patients (.mat) /HFOEEG - Preprocessed HFO specific EEG data (.mat). These data show the raw filtered and RMS 'samples' that were used for the analysis /PatientData - Patient level data (.mat) Download and move all "UMHS-xxxx-elecxx.mat" files into the /HFOEEG folder. Details on file contents: /Data/BKGEEG/UMHS-xxxx.mat Background EEG data that is filtered (80-500 Hz) and smoothed (root mean square RMS) /Data/HFOEEG/UMHS-xxxx-elecXX.mat Up to 500 samples of EEG data during which a HFO was detected on the specified electrode. Like background data this is also filtered and smoothed. /Data/CombinedData/combinedPatientData.mat All centrality and HFO rate features for all patients. Includes critical resection percentage (CReP) and centrality ranks grouped into different percentiles for each electrode type. /Data/PatientData/UMHS-xxxx.mat Patient level data including HFO information, electrode information, patient surgical outcome, and centrality. Related publication(s): Lin J, Gliske S, Shedden K, Zochowski M, Stacey W, "Network dynamics of interictal High Frequency Oscillations predict surgical outcome within the clinical workflow in refractory epilepsy," Undergoing submission

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FAIRshake JSON-LD Rubric Pennsieve Discover
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FAIRshake JSON-LD Rubric Pennsieve Discover
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FAIRshake JSON-LD Rubric Pennsieve Discover
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FAIRshake JSON-LD Rubric Pennsieve Discover
yes (1.00) yes (1.00) yes (1.00)   yes (1.00)       yes (1.00)   yesbut (0.75) yes (1.00) yes (1.00) yes (1.00) yes (1.00) Dec 24, 2022
The FAIRshake dataset rubric Pennsieve Discover
      yes (1.00) yes (1.00) yesbut (0.75) yes (1.00) yes (1.00) yes (1.00) yes (1.00) yes (1.00)   yes (1.00)     Dec 24, 2022